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An all-in-one multi-mode photodetector for ultrafast adaptive vision in extreme-to-obscured conditions with intelligence-augmented classification
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Publication Year
2025-06-01
Journal
Applied Materials Today
Publisher
Elsevier Ltd
Citation
Applied Materials Today, Vol.44
Keyword
Adaptive vision systemsDynamic optical detectionMachine learning integrationNeuromorphic sensingQuantum-well photodetector
Mesh Keyword
Adaptive visionAdaptive vision systemDynamic optical detectionMachine learning integrationMachine-learningNeuromorphicNeuromorphic sensingOptical detectionQuantum well photodetectorsVision systems
All Science Classification Codes (ASJC)
Materials Science (all)
Abstract
Traditional photodetectors are often limited to specific tasks, such as continuous illumination sensing or event detection, relying on distinct architectures for functionalities like static and dynamic pattern recognition. Achieving seamless integration of temporal processing, event-driven adaptability, and static pattern recognition within a unified architecture remains a significant challenge. These limitations are further intensified by environmental variations, such as fluctuating lighting and obscured conditions, which undermine their reliability in real-world applications. Here, we present a reconfigurable and adaptive single-pixel photodetector capable of transitioning seamlessly between photodetector, synaptic, and retinomorphic modes by altering its operating conditions. Leveraging quantum-well-inspired charge trapping mechanisms, the device achieves ultrafast transient detection, cumulative signal integration, and robust adaptability, mimicking key functionalities of biological vision. Experimental results, supported by simulations, demonstrate real-time adaptive vision, multi-object tracking, and enhanced pattern recognition under diverse environments, ranging from intense sunlight to obscured conditions. The device transcends conventional sensing by enabling object classification through machine learning, achieving over 94 % accuracy using multidimensional metrics, even for objects with similar shapes and sizes. This multifunctional photodetection platform addresses critical challenges in next-generation sensing technologies by combining adaptability, high-speed response, and intelligent classification, paving the way for transformative applications in autonomous vision, neuromorphic computing, and intelligent imaging systems.
ISSN
2352-9415
Language
eng
URI
https://aurora.ajou.ac.kr/handle/2018.oak/38261
https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=105003009922&origin=inward
DOI
https://doi.org/10.1016/j.apmt.2025.102732
Journal URL
https://www.sciencedirect.com/science/journal/23529407
Type
Article
Funding
This study was supported through the National Research Foundation of Korea [RS-2023-NR076981, RS-2024-00336428, and RS-2024-00403069] of the Ministry of Science and ICT, Republic of Korea.
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Kumar, Mohit Image
Kumar, MohitKUMARMOHIT
Department of Materials Science Engineering
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